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Symbolic Physics Learner: Discovering governing equations via Monte Carlo tree search

About

Nonlinear dynamics is ubiquitous in nature and commonly seen in various science and engineering disciplines. Distilling analytical expressions that govern nonlinear dynamics from limited data remains vital but challenging. To tackle this fundamental issue, we propose a novel Symbolic Physics Learner (SPL) machine to discover the mathematical structure of nonlinear dynamics. The key concept is to interpret mathematical operations and system state variables by computational rules and symbols, establish symbolic reasoning of mathematical formulas via expression trees, and employ a Monte Carlo tree search (MCTS) agent to explore optimal expression trees based on measurement data. The MCTS agent obtains an optimistic selection policy through the traversal of expression trees, featuring the one that maps to the arithmetic expression of underlying physics. Salient features of the proposed framework include search flexibility and enforcement of parsimony for discovered equations. The efficacy and superiority of the SPL machine are demonstrated by numerical examples, compared with state-of-the-art baselines.

Fangzheng Sun, Yang Liu, Jian-Xun Wang, Hao Sun• 2022

Related benchmarks

TaskDatasetResultRank
Symbolic RegressionSRBench black-box (test)
R^20.5472
28
Symbolic RegressionStrogatz Dataset epsilon=0.1 (test)
R277.15
20
Symbolic RegressionStrogatz Dataset epsilon=0.001 (test)
R2 Score0.7526
20
Symbolic RegressionStrogatz Dataset ϵ = 0.0 (test)
R^20.739
20
Symbolic RegressionStrogatz Dataset epsilon=0.01 (test)
R2 Score0.7388
20
Symbolic RegressionFeynman Dataset epsilon=0.1 (test)
R2 Score0.7109
20
Symbolic RegressionFeynman Dataset epsilon=0.001 (test)
R270.73
20
Symbolic RegressionFeynman Dataset epsilon=0.01 (test)
R20.7133
20
Symbolic RegressionFeynman Dataset ϵ = 0.0 (test)
R^20.7073
20
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